Maximizing the Information Content of Experiments in Systems Biology
File(s)
Author(s)
Liepe, Juliane
Filippi, Sarah
Komorowski, Micha L
Stumpf, Michael PH
Type
Journal Article
Abstract
Our understanding of most biological systems is in its infancy. Learning their structure and intricacies is fraught with challenges, and often side-stepped in favour of studying the function of different gene products in isolation from their physiological context. Constructing and inferring global mathematical models from experimental data is, however, central to systems biology. Different experimental setups provide different insights into such systems. Here we show how we can combine concepts from Bayesian inference and information theory in order to identify experiments that maximize the information content of the resulting data. This approach allows us to incorporate preliminary information; it is global and not constrained to some local neighbourhood in parameter space and it readily yields information on parameter robustness and confidence. Here we develop the theoretical framework and apply it to a range of exemplary problems that highlight how we can improve experimental investigations into the structure and dynamics of biological systems and their behavior.
Date Issued
2013
Date Acceptance
2012-11-30
Citation
PLoS computational biology, 2013
ISSN
1553-734X
Publisher
Public Library of Science
Journal / Book Title
PLoS computational biology
Volume
9
Issue
1
Copyright Statement
© 2013 Liepe et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Sponsor
Biotechnology and Biological Sciences Research Council (BBSRC)
Biotechnology and Biological Sciences Research Council (BBSRC)
Biotechnology and Biological Sciences Research Council (BBSRC)
Biotechnology and Biological Sciences Research Cou
Medical Research Council (MRC)
Grant Number
BB/G001863/1
BB/G020434/1
BB/G007934/1
BB/G530268/1
G1002092
Subjects
Science & Technology
Life Sciences & Biomedicine
Biochemical Research Methods
Mathematical & Computational Biology
Biochemistry & Molecular Biology
BIOCHEMICAL RESEARCH METHODS
MATHEMATICAL & COMPUTATIONAL BIOLOGY
APPROXIMATE BAYESIAN COMPUTATION
EXPERIMENTAL-DESIGN
PARAMETER-ESTIMATION
MODEL SELECTION
DYNAMICAL-SYSTEMS
UNCERTAINTY
NETWORKS
CELL
INFERENCE
ENTROPY
Bayes Theorem
Models, Theoretical
Systems Biology
Uncertainty
Bioinformatics
06 Biological Sciences
08 Information And Computing Sciences
01 Mathematical Sciences
Publication Status
Published
Article Number
e1002888